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Model Predictive Control for PMSM Based on Discrete Space Vector Modulation with RLS Parameter Identification

Hao Yu, Jiajun Wang, Zhuangzhuang Xin

2022Energies24 citationsDOIOpen Access PDF

Abstract

Model Predictive Control (MPC) based on Discrete Space Vector Modulation (DSVM) has the advantages of simple mathematical model and fast dynamic response. It is widely used in permanent magnet synchronous motor (PMSM). Additionally, the control performance of DSVM-MPC is influenced by the accuracy of motor parameters and the select speed of optimal voltage vector. In order to identify motor parameters accurately, model predictive control for PMSM based on discrete space vector modulation with recursive least squares (RLS) parameter identification is proposed in this paper. Additionally, a method to preselect candidate voltage vectors is proposed to select the optimal voltage vector more quickly. The simulation model of RLS-DSVM-MPC is established to simulate the influence of different parameters on PMSM performance. The simulation results show that model predictive control for PMSM based on discrete space vector modulation with RLS parameter identification has a better control performance than that of without RLS parameter identification.

Topics & Concepts

Control theory (sociology)Model predictive controlIdentification (biology)Computer scienceVector controlModulation (music)VoltageRecursive least squares filterSynchronous motorControl engineeringInduction motorEngineeringControl (management)AlgorithmArtificial intelligencePhysicsBotanyAdaptive filterElectrical engineeringBiologyAcousticsMultilevel Inverters and ConvertersAdvanced DC-DC ConvertersSensorless Control of Electric Motors
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